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Towards Scene Graph Anticipation

About

Spatio-temporal scene graphs represent interactions in a video by decomposing scenes into individual objects and their pair-wise temporal relationships. Long-term anticipation of the fine-grained pair-wise relationships between objects is a challenging problem. To this end, we introduce the task of Scene Graph Anticipation (SGA). We adapt state-of-the-art scene graph generation methods as baselines to anticipate future pair-wise relationships between objects and propose a novel approach SceneSayer. In SceneSayer, we leverage object-centric representations of relationships to reason about the observed video frames and model the evolution of relationships between objects. We take a continuous time perspective and model the latent dynamics of the evolution of object interactions using concepts of NeuralODE and NeuralSDE, respectively. We infer representations of future relationships by solving an Ordinary Differential Equation and a Stochastic Differential Equation, respectively. Extensive experimentation on the Action Genome dataset validates the efficacy of the proposed methods.

Rohith Peddi, Saksham Singh, Saurabh, Parag Singla, Vibhav Gogate• 2024

Related benchmarks

TaskDatasetResultRank
Scene Graph AnticipationAction Genome AGS F=0.7
mR@1031.2
48
Scene Graph AnticipationAction Genome AGS, F=0.5
mR@1022.9
32
Scene Graph AnticipationAction Genome GAGS, F=0.5
mR@1025.2
16
Scene Graph AnticipationAction Genome Gaussian Noise 1.0 (test)
mR@107.9
8
Scene Graph AnticipationAction Genome (test)
R@1037.3
8
Scene Graph AnticipationVSGR (test)
R@1027.5
8
Scene Graph AnticipationAction Genome Frost 1.0 (test)
Mean Recall@1010.5
8
Scene Graph AnticipationAction Genome Brightness 1.0 (test)
mR@1013.6
8
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